This paper deals with the selection of centres for radial basis function (RBF) networks. A novel mean-tracking clustering algorithm is described as a way in which centers can be chosen based on a batch of collected data. A direct comparison is made between the mean-tracking algorithm and k-means clustering and it is shown how mean-tracking clustering is significantly better in terms of achieving an RBF network which performs accurate function modelling
The selection of centers and widths has a strong in-fluence on the performance of radial basis funct...
Abstract—In radial basis function (RBF) networks, placement of centers is said to have a significant...
In this paper, we discuss the role of clustering techniques in the design of neural networks. Specif...
Radial basis functions can be combined into a network structure that has several advantages over con...
This study presents a new algorithm which extends an input-output clustering method for determining ...
Radial Basis Function Networks have been widely used to approximate and classify data. In the common...
This study presents a new algorithm which extends an input-output clustering method for determining ...
In this paper, we propose a new method for selecting RBF centers. The strength of our method is to d...
Abstract. Clustering techniques have always been oriented to solve classification and pattern recogn...
The accuracies rates of the neural networks mainly depend on the selection of the correct data cente...
Rangkaian Fungsi Asas Radial telah digunakan dengan meluas untuk menganggarkan dan mengelaskan data....
Radial basis function neural networks are a widely used type of artificial neural network. The numbe...
Training algorithms for radial basis function (RBF) networks usually consist of an unsupervised proc...
The behavior of Radial Basis Function (RBF) Networks greatly depends on how the center points of the...
In this master thesis I recapitulated several methods for clustering input data. Two well known clus...
The selection of centers and widths has a strong in-fluence on the performance of radial basis funct...
Abstract—In radial basis function (RBF) networks, placement of centers is said to have a significant...
In this paper, we discuss the role of clustering techniques in the design of neural networks. Specif...
Radial basis functions can be combined into a network structure that has several advantages over con...
This study presents a new algorithm which extends an input-output clustering method for determining ...
Radial Basis Function Networks have been widely used to approximate and classify data. In the common...
This study presents a new algorithm which extends an input-output clustering method for determining ...
In this paper, we propose a new method for selecting RBF centers. The strength of our method is to d...
Abstract. Clustering techniques have always been oriented to solve classification and pattern recogn...
The accuracies rates of the neural networks mainly depend on the selection of the correct data cente...
Rangkaian Fungsi Asas Radial telah digunakan dengan meluas untuk menganggarkan dan mengelaskan data....
Radial basis function neural networks are a widely used type of artificial neural network. The numbe...
Training algorithms for radial basis function (RBF) networks usually consist of an unsupervised proc...
The behavior of Radial Basis Function (RBF) Networks greatly depends on how the center points of the...
In this master thesis I recapitulated several methods for clustering input data. Two well known clus...
The selection of centers and widths has a strong in-fluence on the performance of radial basis funct...
Abstract—In radial basis function (RBF) networks, placement of centers is said to have a significant...
In this paper, we discuss the role of clustering techniques in the design of neural networks. Specif...